SlideShare ist ein Scribd-Unternehmen logo
1 von 9
Downloaden Sie, um offline zu lesen
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
207
Agricultural Productivity Growth and Incidence of Poverty: An
Experience from Africa
1
AJAO, A. O; 1
OGUNNIYI, L.T and 2
OYEDELE, G. A.
1
Agricultural Economics Department, Ladoke Akintola Univeristy of Technology
Ogbomoso-Nigeria.
e-mail: oaajao57@lautech.edu.ng
2
Oyo State Agricultural Development Programme, Oyo State, Nigeria.
e-mail: oyeed@yahoo.com
Abstract
This study investigates the effects of agricultural productivity growth on poverty. Using Food and Agriculture
Organisation (FAO) data covering two decades (1971-2009) we determined the relationship between agricultural
productivity and poverty. Malmquist Index Total Factor Productivity (TFP) was used as indicator of agricultural
productivity while Human Development Index (HDI) was adopted as proxy for poverty. Further analysis was
carried out to determine whether the performance of factor productivity is due to change in technology or
technical efficiency.
The result of Malmquist TFP index analysis showed that the average TFP growth over the period was found to
be 0.2 percent per annum with large variation in growth rate across the sampled countries. Twenty-two countries
representing about 52% of the total sample experienced productivity growth and this is largely due to
technological change. Congo and Somalia experienced decline in growth and this may be attributed to the
incidence of war and civil unrest which have adverse effect on growth. Overall, the continent experienced
improvement in technology with 2.1 percent upward shift in the production frontier and 1.8 percent decline in
efficiency. Regional comparison of agricultural productivity growth reveals that East, South and North Africa
experienced growth of 3.3, 2.6 and 3.6 percent respectively. There were declines in agricultural productivity in
West and Southern Africa regions as a result of reduction in efficiency.
The analysis of agricultural productivity growth on poverty shows a positive and significant relationship between
indicators of the two variables. Specifically, the result indicates that a unit increase in productivity growth will
lead to 0.69 percent change in human development index and conversely poverty. Further analysis revealed that
the unit improvement in technological change will cause about 1.3 percent improvement in human development
index.
The study concludes that agricultural productivity growth is pro-poor and effective strategy to reduce poverty in
Africa. It is recommended that relevant policies to address the constraints to technology progress and efficiency
should be promoted to improve productivity growth and reduce poverty.
Key Words: Malmquist index, Total Factor Productivity, Technology, Efficiency, Agricultural Productivity,
Poverty, Africa.
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
208
Introduction
Agriculture has for many years been the backbone of Africa economy and the potential sources of economic
growth despite all its weaknesses. Agriculture accounts for about 30 percent of GDP; 40 percent of export value
and about 80 percent of employment generation (FAO, 2006; World Bank 2000), also more than two-third of the
total population live in the rural area where majority of the households are involved in agricultural activities
(FAO, 2006).
In view of the above, agricultural sector holds the key to economic growth as well as addressing the problem of
poverty and income inequality in the African continent. It is widely acknowledged in literature that agricultural
productivity growth is required for a meaningful industrialization to take place. Despite the potentials that
remained untapped in this sector, agriculture has been highly neglected and remained underfunded.
In order to meet one of the objectives of Millennium Development Goal (MDG) by halving poverty, African
heads of state recognize the agricultural sector as key to achieving this objective by establishing several
initiatives that can promote growth in this sector. This and others led to the establishment of New Partnership for
African Development (NEPAD) as an indigenous economic outlook that recognizes the importance of
agriculture for the desired development and poverty reduction in the continent, also Comprehensive Africa
Agricultural Development Program (CAADP) was established to improve agricultural policies in the continent.
The ultimate goals of these special initiatives are to achieve sustainable agricultural growth which will in the
long term leads to poverty reduction. Though Africa Peer Review Mechanism (APRM) is not specifically
established for agricultural sector, but could have potential impact on the sector since it is assumed that an
improvement in government policy making process will reflect in a good policy environment which the sector
needs to thrive.
Growth in agricultural sector is essential for poverty reduction because of the size of population that depends on
it for their livelihood and the relative incidence of poverty among the African rural dweller. This study therefore
attempts to estimate the direct effect of agricultural productivity growth on poverty
MATERIALS AND METHOD
DEA is linear-programming methodology, which uses data on input and output quantities of a Decision Making
Units (DMU) such as individual firms of a specific sectors to construct a piece-wise linear surface over data
points. In this study, the countries were used as the DMU. The DEA method is closely related to Farrell’s
original approach (1957) and it is widely being regarded in the literature as an extension of that approach. This
approach was initiated by Charnes et al.; (1978) and related work by Fare, et al,. (1985). The frontier surface is
constructed by the solution of a sequence of linear programming problems. The degree of technical inefficiency
of each country, which represents the distance between the observed data point and the frontier, is produced as a
by-product of the frontier construction method.
DEA can either be input or output oriented depending on the objectives. The input-oriented method, defines the
frontier by seeking the maximum possible proportional reduction in input usage while the output is held constant
for each country. The output-oriented method seeks the maximum proportional increase in output production
with input level held fixed. These two methods, that is, input-output oriented methods provide the same
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
209
technical efficiency score when a constant return to scale (CRS) technology applies but are unequal when
variable returns to scale (VRS) is assumed (Coelli and Rao, 2001). In this study, the output-oriented method
will be used by assuming that in agriculture, it is common to assume output maximization from a given sets of
inputs. The interpretation of CRS assumption has attracted a lot of critical discussion e.g. Ray and Desli, 1997,
Lovell, 2001, but also monotonicity and convexity are debatable e.g. Cherchye, et al., 2000.
Fare et al., (1994) used Data Envelopment Analysis (DEA) methods to estimate and decompose the Malmquist
productivity index. The DEA method is a non-parametric approach in which the envelopment of decision-
making units (DMU) can be estimated through linear programming methods to identify the “best practice” for
each DMU. The efficient units are located on the frontier and the inefficient ones are enveloped by it. Four linear
programs (LPs) must be solved for each DMU in this study (Country) to obtain the distances defined in equation
(iii) and they are:
(i)
  ,Max),( ,
1


tt
t
o yxd
s.t 0
0
0
,






tti
tit
Xx
Yy
(ii)
 
0
0
0
,),(
11,
11,
,
1
11
1













tti
tti
tt
t
o
Xx
Yyst
Maxyxd
(iii)
  ,Max),( ,
1
11 

 tt
t
o yxd
st 0
0
0
1,
1,








tti
tti
Xx
Yy
(iv)
 
0
0
0
,),(
1,
1,
,
11











tti
tti
tt
t
o
Xx
Yyst
Maxyxd
Where  is a N X 1 vector of a constant and 1hscalar witais 
Over time best practices are natural and to include frontier shifts, that is, technical change, the Malmquist
productivity index is a well-established measure.
The Malmquist productivity index, as proposed by Caves, et al., (1982), allows one to describe multi-input,
multi-output production without involving explicit price data and behavioral assumptions. The Malmquist
Productivity Iindex identifies TFP growth with respect to two time periods through a quantitative ratio of
distance functions (Malmquist, 1953). Distance functions can be classified into input distance functions and
output distance functions. Input distance functions look for a minimal proportional contraction of an input
vector, given an output vector, while output distance functions look for maximal proportional expansion of an
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
210
output vector, given an input vector. By using distance functions, the Malmquist Productivity Index can measure
TFP growth without cost data, only with quantity data from multi-input and multi-output representations of
technology. In this study, we use output distance functions. According to Hjalmarson and Veiderpass (1992),
The Malmquist (quantity) index was originally introduced in a consumer theory context as a ratio between two
deflation or proportional scaling factor deflating two quantity vectors onto the boundary of a utility possibility
set. This deflation or distance function approach was later applied to the measurement of productivity in Caves,
et al., (1992) in a general production function framework and in a non-parametric setting by Fare, et al., (1992).
The productivity change, that is TFP change (TFPCH) using technology of period t as reference is as follows:






 

),(
),(
),,,( 11
11
tt
t
o
tt
t
o
tttt
t
o
yxd
yxd
yxyxM
………………………………………………………(v)
Similarly, we can measure Malmquist productivity index with period t+1 as references as follows:






 




),(
),(
),,,( 1
11
1
11
1
tt
t
o
tt
t
o
tttt
t
o
yxd
yxd
yxyxM
…………………………………………………(vi)
in order to avoid choosing arbitrary period as reference, Fare et al., (1994) specifies the Malmquist productivity
index as the geometric mean of the above two indices
2/1
1
11
1
11
11
),(
),(
),(
),(
),,,( 





 




tt
t
o
tt
t
o
tt
t
o
tt
t
o
tttto
yxd
yxd
yxd
yxd
yxyxM
……………………… …….(vii)
equation (vi) can be decomposed into the following two components namely efficiency change index (EFFCH)
which measures the catching up components measuring efficiency change in relation to the frontier at different
time. The second component is the geometric average of both components and measures technical change
(TECHCH) which measure the technology shift between period t and t+1. The first component in TECHCH
measures the position of unit t+1 with respect to the technologies in both periods. The second component also
estimates this for unit t. If the TECHCH is greater (or less) than one, then technological progress (or regress)
exists.
),(
),( 11
1
tt
t
o
tt
t
o
yxd
yxd
EFFCH 


………………………………………………………… … (viii)
and
2/1
1
11
1
110
),(
),(
),(
),,(






 



tt
t
o
tt
t
o
tt
t
o
tt
t
yxd
yxd
X
yxd
yxd
TECHCH
……………………………………….…(ix)
DATA AND ITS SOURCE
The study was based on the data that were drawn from the FAO web site (AGROSTAT) which covers the period
1971-2009 to estimate the TFP using Malmquist index. The following are some of the main features of the data
series that were used for the study. The data consists of information on agricultural production (Crop and
Livestock index) and means of production such as total rural population; land area; fertilizer; herbicide and
irrigation for each of the selected countries were drawn from FAO statistic database. To investigate the link
between agricultural productivity and poverty, we modeled relationship between the earlier calculated TFP and
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
211
Human Development Index (HDI) from UNDP which is a composite index of development measuring the
average achievement in three basic dimensions of human development. The components of HDI are Gross
National income per capita, education and life expectancy which are used as proxy for poverty.
Econometric model and variable definition
The first objective to obtain the TFP was achieved by solving equation (iv)-(vi) and to examine its effect on
poverty an Ordinary Least Square (OLS) estimation techniques was used to examine the effect of the above
selected variables on agricultural productivity growth.
Y = f(X, e)…………………………………………………………………… …(x)
Where Y is the TFPCH index, that is, Malmquist Productivity Index and X is the HDI
RESULTS AND DISCUSSION
The Malmquist index of TFP was constructed for 42 countries for a period of 39 years. The obtained index was
decomposed into technological change and efficiency change over the sample period using DEA.
The Malmquist TFP indices
The productivity growth and its components over the sample period are presented in table 1. The average TFP
growth over the period was found to be 0.2 percent per annum with large variation in growth rate observed for
various countries.
Recall that the value greater than one indicates an improvement in the productivity, pure efficiency and
technology while less than one implies decline. It was observed from table 2 that twenty two countries which
represents about 52 percent of the total sample experienced productivity growth within the reference period. The
observed growth is accounted for largely by technological change with the exception of Mali, Senegal and
Liberia in which efficiency change accounts for the observed growth rather than technological progress. Other
countries including Congo and Somalia experienced on the average a decline in growth.
Overall, the results showed there have been evidence of technological improvement over the reference period;
this indicates advances in technology as represented by an upward shift in the production frontier (2.1percent)
which have not been fully exploited by African farmers and further suggests that technology is an important
driver of African agricultural growth while 1.8 percent decline in efficiency was observed. The obtained
technical efficiency was further decomposed into scale and pure technical efficiencies; it was observed as shown
in Table 2 that there is a decline in pure efficiency change and scale efficiency change with a value of 0.987 and
0.995 respectively, this contributes to decline of overall efficiency change. This finding support the earlier
findings by Nkamleu et al., 2008; Allen, 2010, Block 2010 and Ni-Pratt and Yu 2011.
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
212
Table 1: Malmquist Index Summary of Country Means
Firm Effch techch pech sech Tfpch
Algeria 1.019 1.055 1.019 1.000 1.075
Angola 0.927 1.028 0.927 1.000 0.953
Benin 0.959 1.105 0.959 1.000 1.060
Botswana 0.973 1.106 0.973 1.000 1.076
Burkina Faso 1.004 1.043 1.004 1.000 1.047
Burundi 0.989 1.002 0.989 1.000 0.991
Cape Verde 1.001 1.071 1.001 1.000 1.072
Central African Republic 0.994 1.098 0.994 1.000 1.091
Chad 0.997 1.113 0.997 1.000 1.110
Comoros 0.998 1.042 0.998 1.000 1.039
Congo 0.945 1.044 0.945 1.000 0.986
Côte d'Ivoire 0.998 0.995 1.000 0.998 0.993
Djibouti 0.996 1.026 0.996 1.000 1.022
Egypt 0.989 1.025 0.989 1.000 1.014
Gabon 1.006 1.001 1.006 1.000 1.006
Ghana 0.918 1.083 0.918 1.000 0.995
Guinea 0.922 0.972 0.922 1.000 0.896
Kenya 0.938 0.974 0.938 1.000 0.914
Lesotho 0.969 1.011 0.963 1.007 0.980
Liberia 1.017 0.987 1.017 1.000 1.004
Libya 1.000 0.983 1.000 1.000 0.983
Madagascar 1.018 1.010 1.018 1.000 1.028
Malawi 0.896 0.950 0.901 0.995 0.851
Mali 1.024 0.996 1.024 1.000 1.019
Mauritius 0.967 1.020 0.965 1.002 0.986
Morocco 1.000 0.993 1.000 1.000 0.993
Mozambique 1.005 1.007 1.029 0.977 1.012
Namibia 1.030 1.005 1.022 1.007 1.035
Niger 0.952 1.048 0.984 0.967 0.997
Nigeria 0.897 0.980 0.932 0.962 0.879
Rwanda 1.000 0.999 1.000 1.000 0.999
Sao Tome and Principe 0.960 0.995 1.000 0.960 0.955
Senegal 1.031 0.980 1.001 1.030 1.011
Seychelles 1.011 0.991 1.000 1.011 1.002
Sierra Leone 1.004 0.958 1.001 1.003 0.963
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
213
Somalia 0.920 0.991 1.000 0.920 0.911
South Africa 0.947 0.949 1.000 0.947 0.898
Swaziland 1.026 1.019 1.026 1.000 1.046
Tunisia 1.018 1.046 1.019 0.999 1.065
united republic of Tanzania 0.998 1.085 0.998 1.000 1.083
Zambia 0.889 1.108 0.889 1.000 0.984
Zimbabwe 1.097 0.984 1.097 1.000 1.079
Mean 0.982 1.021 0.987 0.995 1.002
The mean productivity growth was computed for each region namely Southern Africa, East Africa, West Africa,
Central Africa and Northern Africa. The East, South and North Africa experienced growth of 3.3 percent, 2.6
percent and 3.6 percent respectively with 0.5 percent and 2 percent growth in efficiency change and
technological change accounted for the observed growth in North Africa. Meanwhile, the observed growth
observed in other two regions is accounted for by a decline in efficiency and improvement in the technology. It
should be noted here that though productivity decline was experienced in West and southern Africa region which
is largely accounted for poor efficiency change, the region still enjoy a modest technological growth of 1.8
percent and 1.6 percent respectively. This finding further support the opinion that improves performance with
expenditure on R and D enhanced agricultural productivity growth.
IMPLICATION OF AGRICULTURAL PRODUCTIVITY GROWTH ON POVERTY
The proposition that agricultural productivity growth has a direct impact on poverty was examined using the
mean TFP and HDI also technological change and HDI. We chose HDI as a proxy for poverty due to lack of
complete data set for headcount index for the country selected.
The result from table 2 shows a positive and significant relationship between the TFP and HDI also
technological progress and HDI is significant at 5 percent probability level. For model 1, the elasticity was found
to be 0.69 suggesting that 1 percent increase in the productivity growth will likely lead to 0.69 percent change in
the HDI. Since TFP can be broken down into efficiency change and technological change and was earlier found
that technological change contributes more to the productivity growth than the efficiency change, we further
looked at the influence of technological change and HDI (model 2), the elasticity was found to be 1.29,
suggesting that about 1 percent improvement in the technological change will improve the HDI by about 1.3
percent. This finding is similar to Colin et al. 2001 and further proved agricultural productivity growth to be both
pro-poor and pro-growth
Table 2: Dependent variable HDI
Variable Model 1 Model 2
TFP index 0.69 (2.13)**
+Technological change index 1.29 (2.85)**
Constant 0.23 0.85
R square 0.10 0.20
F statistic 4.52 8.13
** indicates significance at 5 %
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
214
Conclusion and recommendations:
The study confirms that the continent recorded improvement in agricultural productivity and this was due to
technological progress in most of the countries. However, there were cases of decline in growth in some
countries due to decline in efficiency and incidence of war and civil unrest. There was a positive and significant
relationship between indicators of agricultural productivity growth and human development index (poverty
indicator) implying that increase in productivity growth will result in improvement in human development index
and consequently reduction in poverty. The trend is the same for improvement in technological change and
improvement in human development index. This is not unexpected since technological change is the major
driver of productivity growth in the continent. The study concludes that agricultural productivity growth is pro-
poor and a major driver of poverty reduction in Africa. It is recommended that relevant policies to address the
constraints to technology progress and efficiency should be promoted to improve productivity growth and reduce
poverty.
REFERENCES
Alene, A.D (2010): ‘Productivity Growth and effects of R and D in African Agriculture’
Agricultural Economics 41:223-238
Block, S (2010): ‘The Decline and Rise of Agricultural Productivity in Sub-Saharan African
Countries Since 1961. Working Paper 16481. Cambridge MA: National Bureau of Economic Research
Caves, D. W., L. R. Christensen and W. E. Diewert. (1982), “The Economic Theory of
Index Numbers and the Measurement of Input, Output, and Productivity.”
Econometrica 50: 1393–1414.
Charnes, A ., W.W. Cooper and E. Rhodes (1978), “Measuring the Efficiency of Decision-
Making Units”. European Journal of Operation Research, 2,429-444
Cherchye, L., T. Kuosmanen and G. T. Post. (2000), ‘‘What is the Economic Meaning of
FDH, A Reply to Thrall.’’ Journal of Productivity Analysis 13(3:, 259–263.
Collin T; I, Xavier; V, Mckenzie-Hill and S, Wiggins (2001): Relationship Between Changes
in Agricultural Productivity and Incidence of Poverty in Developing Countries. DFID
Report No. 7946
Fare, R, S. Grosskopf and C.K. Lovell (1985), The measurement of efficiency of production.
Boston: Kluwer-Nijhoff
Journal of Economics and Sustainable Development www.iiste.org
ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online)
Vol.4, No.5, 2013
215
Fare, R., S. Grosskopf,. B. Lindgren and P. Roos (1992), "Productivity Changes in Swedish
Pharmacies 1980-1989: A Non-parametric Approach", Journal of Productivity Analysis, 3: 85-101.
Fare, R; S. Grosskopf and C.K. Lovell (1994), Production Frontier. Cambridge University
Press, Cambridge
Hjalmarsson, L and A. Veiderpass (1992), Productivity in Swedish Electricity Retail
Distribution. Scandinavian Journal of Economics, 94(S): 193-205
Lovell, C. A. K. (2001), ‘‘The Decomposition of Malmquist Productivity Indexes.’’
Journal of Productivity Analysis 20(3): 437–458.
Malmquist, S. (1953), ‘‘Index Numbers and Indifference Surfaces.’’ Trabajos de
Estadistica 4: 209–242.
Nin-Pratt, A and B, Yu (2011):’ Agricultural Productivity and Policies in Sub-Sahara Africa
IFPRI Discussion Paper 01150
Nkamleu, G.B., S. Kalilou and Z. Abdoulaye (2008), What Accounts for Growth in African
Agriculture, American Journal of Agricultural and Biological Science, 3(1):379-388.
Ray, S. C. and E. Desli (1997). ‘‘Productivity Growth, Technical Progress and
Efficiency Change in Industrialized Countries: Comment.’’ American Economic
Review 87(5): 1033–1039.
World Bank (2000): Can Development Report 2000/01 Attacking Poverty World
Bank/Oxford University Press

Weitere ähnliche Inhalte

Was ist angesagt?

Analysis of resource use efficiency in smallholder mixed crop livestock agric...
Analysis of resource use efficiency in smallholder mixed crop livestock agric...Analysis of resource use efficiency in smallholder mixed crop livestock agric...
Analysis of resource use efficiency in smallholder mixed crop livestock agric...Alexander Decker
 
Macroeconomic environment of Nepal 2017
Macroeconomic environment of Nepal 2017Macroeconomic environment of Nepal 2017
Macroeconomic environment of Nepal 2017Upama Rai
 
Trends in Production and Export of Lentils in Ethiopia
Trends in Production and Export of Lentils in EthiopiaTrends in Production and Export of Lentils in Ethiopia
Trends in Production and Export of Lentils in EthiopiaPremier Publishers
 
Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...
Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...
Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...essp2
 
Implications of Agricultural Productivity Growth for Structural Change and ...
Implications of Agricultural Productivity Growth for Structural Change and ...Implications of Agricultural Productivity Growth for Structural Change and ...
Implications of Agricultural Productivity Growth for Structural Change and ...essp2
 
Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...
Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...
Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...IFPRI Africa
 
A Comparison of Artificial Neural Network and Multiple Regression Analysis in...
A Comparison of Artificial Neural Network and Multiple Regression Analysis in...A Comparison of Artificial Neural Network and Multiple Regression Analysis in...
A Comparison of Artificial Neural Network and Multiple Regression Analysis in...IJCSIS Research Publications
 
Session 8 d dhongde
Session 8 d dhongdeSession 8 d dhongde
Session 8 d dhongdeIARIW 2014
 

Was ist angesagt? (8)

Analysis of resource use efficiency in smallholder mixed crop livestock agric...
Analysis of resource use efficiency in smallholder mixed crop livestock agric...Analysis of resource use efficiency in smallholder mixed crop livestock agric...
Analysis of resource use efficiency in smallholder mixed crop livestock agric...
 
Macroeconomic environment of Nepal 2017
Macroeconomic environment of Nepal 2017Macroeconomic environment of Nepal 2017
Macroeconomic environment of Nepal 2017
 
Trends in Production and Export of Lentils in Ethiopia
Trends in Production and Export of Lentils in EthiopiaTrends in Production and Export of Lentils in Ethiopia
Trends in Production and Export of Lentils in Ethiopia
 
Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...
Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...
Sources of Inefficiency and Growth in Agricultual Output in Subsistence Agric...
 
Implications of Agricultural Productivity Growth for Structural Change and ...
Implications of Agricultural Productivity Growth for Structural Change and ...Implications of Agricultural Productivity Growth for Structural Change and ...
Implications of Agricultural Productivity Growth for Structural Change and ...
 
Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...
Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...
Policy Drivers of Africa’s Agriculture Transformation: A CAADP Biennial Revie...
 
A Comparison of Artificial Neural Network and Multiple Regression Analysis in...
A Comparison of Artificial Neural Network and Multiple Regression Analysis in...A Comparison of Artificial Neural Network and Multiple Regression Analysis in...
A Comparison of Artificial Neural Network and Multiple Regression Analysis in...
 
Session 8 d dhongde
Session 8 d dhongdeSession 8 d dhongde
Session 8 d dhongde
 

Andere mochten auch

Reasons why one direction are homosexuals
Reasons why one direction are homosexualsReasons why one direction are homosexuals
Reasons why one direction are homosexualsNicole Hart
 
Trabalho Grupo: One Direction
Trabalho Grupo: One DirectionTrabalho Grupo: One Direction
Trabalho Grupo: One DirectionBarbaraaDiogo
 
The invention of automobile
The invention of automobileThe invention of automobile
The invention of automobileSaqlain Ahmed
 
One Direction Power Point
One Direction Power PointOne Direction Power Point
One Direction Power PointMelanie Arreola
 
PowerPoint of what we want: One Direction
PowerPoint of what we want: One DirectionPowerPoint of what we want: One Direction
PowerPoint of what we want: One DirectionClauudia_
 
Project One DIrection
Project One DIrectionProject One DIrection
Project One DIrectionMarcoylucia
 
Lean production-system
Lean production-systemLean production-system
Lean production-systemSusan Gray
 
How technology has changed our lives
How technology has changed our livesHow technology has changed our lives
How technology has changed our livesadriannedraughn
 
Cars Of The Future
Cars Of The FutureCars Of The Future
Cars Of The Futuremille220
 
Automobile technologies in 2020
Automobile technologies in 2020Automobile technologies in 2020
Automobile technologies in 2020Pratik Krishnan
 
Cars Presentation
Cars  PresentationCars  Presentation
Cars Presentationorlandoross
 
History of cars presentation
History of cars presentationHistory of cars presentation
History of cars presentationthe_al3lwi
 
Ppt on automobile industry
Ppt on automobile industryPpt on automobile industry
Ppt on automobile industryPriya Tiwari
 
Technology Presentation
Technology PresentationTechnology Presentation
Technology Presentationplandeen
 

Andere mochten auch (20)

Inventions
InventionsInventions
Inventions
 
Reasons why one direction are homosexuals
Reasons why one direction are homosexualsReasons why one direction are homosexuals
Reasons why one direction are homosexuals
 
Trabalho Grupo: One Direction
Trabalho Grupo: One DirectionTrabalho Grupo: One Direction
Trabalho Grupo: One Direction
 
One direction
One directionOne direction
One direction
 
The invention of automobile
The invention of automobileThe invention of automobile
The invention of automobile
 
One direction
One directionOne direction
One direction
 
One Direction Power Point
One Direction Power PointOne Direction Power Point
One Direction Power Point
 
PowerPoint of what we want: One Direction
PowerPoint of what we want: One DirectionPowerPoint of what we want: One Direction
PowerPoint of what we want: One Direction
 
Project One DIrection
Project One DIrectionProject One DIrection
Project One DIrection
 
Lean production-system
Lean production-systemLean production-system
Lean production-system
 
How technology has changed our lives
How technology has changed our livesHow technology has changed our lives
How technology has changed our lives
 
Cars Of The Future
Cars Of The FutureCars Of The Future
Cars Of The Future
 
Automobile technologies in 2020
Automobile technologies in 2020Automobile technologies in 2020
Automobile technologies in 2020
 
Cars Presentation
Cars  PresentationCars  Presentation
Cars Presentation
 
Cars ppt.
Cars ppt.Cars ppt.
Cars ppt.
 
Automobiles
AutomobilesAutomobiles
Automobiles
 
History of cars presentation
History of cars presentationHistory of cars presentation
History of cars presentation
 
Ppt on automobile industry
Ppt on automobile industryPpt on automobile industry
Ppt on automobile industry
 
Automobile industry
Automobile industryAutomobile industry
Automobile industry
 
Technology Presentation
Technology PresentationTechnology Presentation
Technology Presentation
 

Ähnlich wie Agricultural productivity growth and incidence of poverty

11.impact of input and output market development interventions in ethiopia
11.impact of input and output market development interventions in ethiopia11.impact of input and output market development interventions in ethiopia
11.impact of input and output market development interventions in ethiopiaAlexander Decker
 
7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopia7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopiaAlexander Decker
 
7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopia7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopiaAlexander Decker
 
A meta-regression analysis of frontier efficiency estimates from Africa
A meta-regression analysis of frontier efficiency estimates from AfricaA meta-regression analysis of frontier efficiency estimates from Africa
A meta-regression analysis of frontier efficiency estimates from AfricaKeuler Hissa
 
Productivity and resource use efficiency in tomato and watermelon farms
Productivity and resource use efficiency in tomato and watermelon farmsProductivity and resource use efficiency in tomato and watermelon farms
Productivity and resource use efficiency in tomato and watermelon farmsAlexander Decker
 
11.productivity and resource use efficiency in tomato and watermelon farms
11.productivity and resource use efficiency in tomato and watermelon farms11.productivity and resource use efficiency in tomato and watermelon farms
11.productivity and resource use efficiency in tomato and watermelon farmsAlexander Decker
 
Oluwasola E. Omoju_2023 AGRODEP Annual Conference
Oluwasola E. Omoju_2023 AGRODEP Annual ConferenceOluwasola E. Omoju_2023 AGRODEP Annual Conference
Oluwasola E. Omoju_2023 AGRODEP Annual ConferenceAKADEMIYA2063
 
11.[1 10]technical efficiency in agriculture in ghana analyses of determining...
11.[1 10]technical efficiency in agriculture in ghana analyses of determining...11.[1 10]technical efficiency in agriculture in ghana analyses of determining...
11.[1 10]technical efficiency in agriculture in ghana analyses of determining...Alexander Decker
 
What determines public budgets for agricultural growth in the developing world?
What determines public budgets for agricultural growth in the developing world?What determines public budgets for agricultural growth in the developing world?
What determines public budgets for agricultural growth in the developing world?IFPRI-PIM
 
Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...
Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...
Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...inventionjournals
 
Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...
Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...
Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...Saide OER Africa
 
SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...
SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...
SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...Vítor João Pereira Domingues Martinho
 
Cost-benefit-analysis of Africa RISING technologies in Tanzania
Cost-benefit-analysis of Africa RISING technologies in Tanzania Cost-benefit-analysis of Africa RISING technologies in Tanzania
Cost-benefit-analysis of Africa RISING technologies in Tanzania africa-rising
 
Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...
Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...
Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...IOSR Journals
 
11.impact of input and output market development interventions on input use a...
11.impact of input and output market development interventions on input use a...11.impact of input and output market development interventions on input use a...
11.impact of input and output market development interventions on input use a...Alexander Decker
 
Impact of input and output market development interventions on input use and ...
Impact of input and output market development interventions on input use and ...Impact of input and output market development interventions on input use and ...
Impact of input and output market development interventions on input use and ...Alexander Decker
 
Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...
Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...
Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...Premier Publishers
 

Ähnlich wie Agricultural productivity growth and incidence of poverty (20)

11.impact of input and output market development interventions in ethiopia
11.impact of input and output market development interventions in ethiopia11.impact of input and output market development interventions in ethiopia
11.impact of input and output market development interventions in ethiopia
 
7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopia7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopia
 
7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopia7.[55 64]impact of input and output market development interventions in ethiopia
7.[55 64]impact of input and output market development interventions in ethiopia
 
Ijciet 10 01_040
Ijciet 10 01_040Ijciet 10 01_040
Ijciet 10 01_040
 
A meta-regression analysis of frontier efficiency estimates from Africa
A meta-regression analysis of frontier efficiency estimates from AfricaA meta-regression analysis of frontier efficiency estimates from Africa
A meta-regression analysis of frontier efficiency estimates from Africa
 
Agriculture Public Expenditure Workshop Module 3
Agriculture Public Expenditure Workshop Module 3Agriculture Public Expenditure Workshop Module 3
Agriculture Public Expenditure Workshop Module 3
 
Productivity and resource use efficiency in tomato and watermelon farms
Productivity and resource use efficiency in tomato and watermelon farmsProductivity and resource use efficiency in tomato and watermelon farms
Productivity and resource use efficiency in tomato and watermelon farms
 
11.productivity and resource use efficiency in tomato and watermelon farms
11.productivity and resource use efficiency in tomato and watermelon farms11.productivity and resource use efficiency in tomato and watermelon farms
11.productivity and resource use efficiency in tomato and watermelon farms
 
Oluwasola E. Omoju_2023 AGRODEP Annual Conference
Oluwasola E. Omoju_2023 AGRODEP Annual ConferenceOluwasola E. Omoju_2023 AGRODEP Annual Conference
Oluwasola E. Omoju_2023 AGRODEP Annual Conference
 
11.[1 10]technical efficiency in agriculture in ghana analyses of determining...
11.[1 10]technical efficiency in agriculture in ghana analyses of determining...11.[1 10]technical efficiency in agriculture in ghana analyses of determining...
11.[1 10]technical efficiency in agriculture in ghana analyses of determining...
 
What determines public budgets for agricultural growth in the developing world?
What determines public budgets for agricultural growth in the developing world?What determines public budgets for agricultural growth in the developing world?
What determines public budgets for agricultural growth in the developing world?
 
Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...
Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...
Production Efficiency of small holder Sugarcane Farmers in Swaziland: A Case ...
 
Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...
Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...
Farmer's Agribusiness Training Course: Module 1 Lesson 3 Supplementary Readin...
 
SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...
SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...
SPATIAL DATA ANALYSIS BASED ON THE KEYNESIAN AND CONVERGENCE THEORIES FOR POR...
 
A i3621e
A i3621eA i3621e
A i3621e
 
Cost-benefit-analysis of Africa RISING technologies in Tanzania
Cost-benefit-analysis of Africa RISING technologies in Tanzania Cost-benefit-analysis of Africa RISING technologies in Tanzania
Cost-benefit-analysis of Africa RISING technologies in Tanzania
 
Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...
Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...
Analysis of Technical, Economic and Allocative Efficiencies of CassavaProduct...
 
11.impact of input and output market development interventions on input use a...
11.impact of input and output market development interventions on input use a...11.impact of input and output market development interventions on input use a...
11.impact of input and output market development interventions on input use a...
 
Impact of input and output market development interventions on input use and ...
Impact of input and output market development interventions on input use and ...Impact of input and output market development interventions on input use and ...
Impact of input and output market development interventions on input use and ...
 
Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...
Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...
Technical Efficiency of Smallholder Sorghum Producers in West Hararghe Zone, ...
 

Mehr von Alexander Decker

Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...Alexander Decker
 
A validation of the adverse childhood experiences scale in
A validation of the adverse childhood experiences scale inA validation of the adverse childhood experiences scale in
A validation of the adverse childhood experiences scale inAlexander Decker
 
A usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websitesA usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websitesAlexander Decker
 
A universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banksA universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banksAlexander Decker
 
A unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized dA unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized dAlexander Decker
 
A trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistanceA trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistanceAlexander Decker
 
A transformational generative approach towards understanding al-istifham
A transformational  generative approach towards understanding al-istifhamA transformational  generative approach towards understanding al-istifham
A transformational generative approach towards understanding al-istifhamAlexander Decker
 
A time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibiaA time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibiaAlexander Decker
 
A therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school childrenA therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school childrenAlexander Decker
 
A theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banksA theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banksAlexander Decker
 
A systematic evaluation of link budget for
A systematic evaluation of link budget forA systematic evaluation of link budget for
A systematic evaluation of link budget forAlexander Decker
 
A synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjabA synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjabAlexander Decker
 
A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...Alexander Decker
 
A survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incrementalA survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incrementalAlexander Decker
 
A survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniquesA survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniquesAlexander Decker
 
A survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo dbA survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo dbAlexander Decker
 
A survey on challenges to the media cloud
A survey on challenges to the media cloudA survey on challenges to the media cloud
A survey on challenges to the media cloudAlexander Decker
 
A survey of provenance leveraged
A survey of provenance leveragedA survey of provenance leveraged
A survey of provenance leveragedAlexander Decker
 
A survey of private equity investments in kenya
A survey of private equity investments in kenyaA survey of private equity investments in kenya
A survey of private equity investments in kenyaAlexander Decker
 
A study to measures the financial health of
A study to measures the financial health ofA study to measures the financial health of
A study to measures the financial health ofAlexander Decker
 

Mehr von Alexander Decker (20)

Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...Abnormalities of hormones and inflammatory cytokines in women affected with p...
Abnormalities of hormones and inflammatory cytokines in women affected with p...
 
A validation of the adverse childhood experiences scale in
A validation of the adverse childhood experiences scale inA validation of the adverse childhood experiences scale in
A validation of the adverse childhood experiences scale in
 
A usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websitesA usability evaluation framework for b2 c e commerce websites
A usability evaluation framework for b2 c e commerce websites
 
A universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banksA universal model for managing the marketing executives in nigerian banks
A universal model for managing the marketing executives in nigerian banks
 
A unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized dA unique common fixed point theorems in generalized d
A unique common fixed point theorems in generalized d
 
A trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistanceA trends of salmonella and antibiotic resistance
A trends of salmonella and antibiotic resistance
 
A transformational generative approach towards understanding al-istifham
A transformational  generative approach towards understanding al-istifhamA transformational  generative approach towards understanding al-istifham
A transformational generative approach towards understanding al-istifham
 
A time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibiaA time series analysis of the determinants of savings in namibia
A time series analysis of the determinants of savings in namibia
 
A therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school childrenA therapy for physical and mental fitness of school children
A therapy for physical and mental fitness of school children
 
A theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banksA theory of efficiency for managing the marketing executives in nigerian banks
A theory of efficiency for managing the marketing executives in nigerian banks
 
A systematic evaluation of link budget for
A systematic evaluation of link budget forA systematic evaluation of link budget for
A systematic evaluation of link budget for
 
A synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjabA synthetic review of contraceptive supplies in punjab
A synthetic review of contraceptive supplies in punjab
 
A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...A synthesis of taylor’s and fayol’s management approaches for managing market...
A synthesis of taylor’s and fayol’s management approaches for managing market...
 
A survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incrementalA survey paper on sequence pattern mining with incremental
A survey paper on sequence pattern mining with incremental
 
A survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniquesA survey on live virtual machine migrations and its techniques
A survey on live virtual machine migrations and its techniques
 
A survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo dbA survey on data mining and analysis in hadoop and mongo db
A survey on data mining and analysis in hadoop and mongo db
 
A survey on challenges to the media cloud
A survey on challenges to the media cloudA survey on challenges to the media cloud
A survey on challenges to the media cloud
 
A survey of provenance leveraged
A survey of provenance leveragedA survey of provenance leveraged
A survey of provenance leveraged
 
A survey of private equity investments in kenya
A survey of private equity investments in kenyaA survey of private equity investments in kenya
A survey of private equity investments in kenya
 
A study to measures the financial health of
A study to measures the financial health ofA study to measures the financial health of
A study to measures the financial health of
 

Kürzlich hochgeladen

Monte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMMonte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMRavindra Nath Shukla
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Serviceritikaroy0888
 
Pharma Works Profile of Karan Communications
Pharma Works Profile of Karan CommunicationsPharma Works Profile of Karan Communications
Pharma Works Profile of Karan Communicationskarancommunications
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayNZSG
 
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...amitlee9823
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756dollysharma2066
 
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangaloreamitlee9823
 
Grateful 7 speech thanking everyone that has helped.pdf
Grateful 7 speech thanking everyone that has helped.pdfGrateful 7 speech thanking everyone that has helped.pdf
Grateful 7 speech thanking everyone that has helped.pdfPaul Menig
 
How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityEric T. Tung
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Dave Litwiller
 
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyThe Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyEthan lee
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxpriyanshujha201
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Neil Kimberley
 
Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Roland Driesen
 
Monthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptxMonthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptxAndy Lambert
 
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒anilsa9823
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756dollysharma2066
 
HONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael HawkinsHONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael HawkinsMichael W. Hawkins
 

Kürzlich hochgeladen (20)

Monte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMMonte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSM
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Service
 
Pharma Works Profile of Karan Communications
Pharma Works Profile of Karan CommunicationsPharma Works Profile of Karan Communications
Pharma Works Profile of Karan Communications
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 May
 
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
 
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pillsMifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
 
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service BangaloreCall Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
Call Girls Hebbal Just Call 👗 7737669865 👗 Top Class Call Girl Service Bangalore
 
Grateful 7 speech thanking everyone that has helped.pdf
Grateful 7 speech thanking everyone that has helped.pdfGrateful 7 speech thanking everyone that has helped.pdf
Grateful 7 speech thanking everyone that has helped.pdf
 
How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League City
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
 
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyThe Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023
 
Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...
 
Monthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptxMonthly Social Media Update April 2024 pptx.pptx
Monthly Social Media Update April 2024 pptx.pptx
 
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
 
HONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael HawkinsHONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael Hawkins
 

Agricultural productivity growth and incidence of poverty

  • 1. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 207 Agricultural Productivity Growth and Incidence of Poverty: An Experience from Africa 1 AJAO, A. O; 1 OGUNNIYI, L.T and 2 OYEDELE, G. A. 1 Agricultural Economics Department, Ladoke Akintola Univeristy of Technology Ogbomoso-Nigeria. e-mail: oaajao57@lautech.edu.ng 2 Oyo State Agricultural Development Programme, Oyo State, Nigeria. e-mail: oyeed@yahoo.com Abstract This study investigates the effects of agricultural productivity growth on poverty. Using Food and Agriculture Organisation (FAO) data covering two decades (1971-2009) we determined the relationship between agricultural productivity and poverty. Malmquist Index Total Factor Productivity (TFP) was used as indicator of agricultural productivity while Human Development Index (HDI) was adopted as proxy for poverty. Further analysis was carried out to determine whether the performance of factor productivity is due to change in technology or technical efficiency. The result of Malmquist TFP index analysis showed that the average TFP growth over the period was found to be 0.2 percent per annum with large variation in growth rate across the sampled countries. Twenty-two countries representing about 52% of the total sample experienced productivity growth and this is largely due to technological change. Congo and Somalia experienced decline in growth and this may be attributed to the incidence of war and civil unrest which have adverse effect on growth. Overall, the continent experienced improvement in technology with 2.1 percent upward shift in the production frontier and 1.8 percent decline in efficiency. Regional comparison of agricultural productivity growth reveals that East, South and North Africa experienced growth of 3.3, 2.6 and 3.6 percent respectively. There were declines in agricultural productivity in West and Southern Africa regions as a result of reduction in efficiency. The analysis of agricultural productivity growth on poverty shows a positive and significant relationship between indicators of the two variables. Specifically, the result indicates that a unit increase in productivity growth will lead to 0.69 percent change in human development index and conversely poverty. Further analysis revealed that the unit improvement in technological change will cause about 1.3 percent improvement in human development index. The study concludes that agricultural productivity growth is pro-poor and effective strategy to reduce poverty in Africa. It is recommended that relevant policies to address the constraints to technology progress and efficiency should be promoted to improve productivity growth and reduce poverty. Key Words: Malmquist index, Total Factor Productivity, Technology, Efficiency, Agricultural Productivity, Poverty, Africa.
  • 2. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 208 Introduction Agriculture has for many years been the backbone of Africa economy and the potential sources of economic growth despite all its weaknesses. Agriculture accounts for about 30 percent of GDP; 40 percent of export value and about 80 percent of employment generation (FAO, 2006; World Bank 2000), also more than two-third of the total population live in the rural area where majority of the households are involved in agricultural activities (FAO, 2006). In view of the above, agricultural sector holds the key to economic growth as well as addressing the problem of poverty and income inequality in the African continent. It is widely acknowledged in literature that agricultural productivity growth is required for a meaningful industrialization to take place. Despite the potentials that remained untapped in this sector, agriculture has been highly neglected and remained underfunded. In order to meet one of the objectives of Millennium Development Goal (MDG) by halving poverty, African heads of state recognize the agricultural sector as key to achieving this objective by establishing several initiatives that can promote growth in this sector. This and others led to the establishment of New Partnership for African Development (NEPAD) as an indigenous economic outlook that recognizes the importance of agriculture for the desired development and poverty reduction in the continent, also Comprehensive Africa Agricultural Development Program (CAADP) was established to improve agricultural policies in the continent. The ultimate goals of these special initiatives are to achieve sustainable agricultural growth which will in the long term leads to poverty reduction. Though Africa Peer Review Mechanism (APRM) is not specifically established for agricultural sector, but could have potential impact on the sector since it is assumed that an improvement in government policy making process will reflect in a good policy environment which the sector needs to thrive. Growth in agricultural sector is essential for poverty reduction because of the size of population that depends on it for their livelihood and the relative incidence of poverty among the African rural dweller. This study therefore attempts to estimate the direct effect of agricultural productivity growth on poverty MATERIALS AND METHOD DEA is linear-programming methodology, which uses data on input and output quantities of a Decision Making Units (DMU) such as individual firms of a specific sectors to construct a piece-wise linear surface over data points. In this study, the countries were used as the DMU. The DEA method is closely related to Farrell’s original approach (1957) and it is widely being regarded in the literature as an extension of that approach. This approach was initiated by Charnes et al.; (1978) and related work by Fare, et al,. (1985). The frontier surface is constructed by the solution of a sequence of linear programming problems. The degree of technical inefficiency of each country, which represents the distance between the observed data point and the frontier, is produced as a by-product of the frontier construction method. DEA can either be input or output oriented depending on the objectives. The input-oriented method, defines the frontier by seeking the maximum possible proportional reduction in input usage while the output is held constant for each country. The output-oriented method seeks the maximum proportional increase in output production with input level held fixed. These two methods, that is, input-output oriented methods provide the same
  • 3. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 209 technical efficiency score when a constant return to scale (CRS) technology applies but are unequal when variable returns to scale (VRS) is assumed (Coelli and Rao, 2001). In this study, the output-oriented method will be used by assuming that in agriculture, it is common to assume output maximization from a given sets of inputs. The interpretation of CRS assumption has attracted a lot of critical discussion e.g. Ray and Desli, 1997, Lovell, 2001, but also monotonicity and convexity are debatable e.g. Cherchye, et al., 2000. Fare et al., (1994) used Data Envelopment Analysis (DEA) methods to estimate and decompose the Malmquist productivity index. The DEA method is a non-parametric approach in which the envelopment of decision- making units (DMU) can be estimated through linear programming methods to identify the “best practice” for each DMU. The efficient units are located on the frontier and the inefficient ones are enveloped by it. Four linear programs (LPs) must be solved for each DMU in this study (Country) to obtain the distances defined in equation (iii) and they are: (i)   ,Max),( , 1   tt t o yxd s.t 0 0 0 ,       tti tit Xx Yy (ii)   0 0 0 ,),( 11, 11, , 1 11 1              tti tti tt t o Xx Yyst Maxyxd (iii)   ,Max),( , 1 11    tt t o yxd st 0 0 0 1, 1,         tti tti Xx Yy (iv)   0 0 0 ,),( 1, 1, , 11            tti tti tt t o Xx Yyst Maxyxd Where  is a N X 1 vector of a constant and 1hscalar witais  Over time best practices are natural and to include frontier shifts, that is, technical change, the Malmquist productivity index is a well-established measure. The Malmquist productivity index, as proposed by Caves, et al., (1982), allows one to describe multi-input, multi-output production without involving explicit price data and behavioral assumptions. The Malmquist Productivity Iindex identifies TFP growth with respect to two time periods through a quantitative ratio of distance functions (Malmquist, 1953). Distance functions can be classified into input distance functions and output distance functions. Input distance functions look for a minimal proportional contraction of an input vector, given an output vector, while output distance functions look for maximal proportional expansion of an
  • 4. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 210 output vector, given an input vector. By using distance functions, the Malmquist Productivity Index can measure TFP growth without cost data, only with quantity data from multi-input and multi-output representations of technology. In this study, we use output distance functions. According to Hjalmarson and Veiderpass (1992), The Malmquist (quantity) index was originally introduced in a consumer theory context as a ratio between two deflation or proportional scaling factor deflating two quantity vectors onto the boundary of a utility possibility set. This deflation or distance function approach was later applied to the measurement of productivity in Caves, et al., (1992) in a general production function framework and in a non-parametric setting by Fare, et al., (1992). The productivity change, that is TFP change (TFPCH) using technology of period t as reference is as follows:          ),( ),( ),,,( 11 11 tt t o tt t o tttt t o yxd yxd yxyxM ………………………………………………………(v) Similarly, we can measure Malmquist productivity index with period t+1 as references as follows:             ),( ),( ),,,( 1 11 1 11 1 tt t o tt t o tttt t o yxd yxd yxyxM …………………………………………………(vi) in order to avoid choosing arbitrary period as reference, Fare et al., (1994) specifies the Malmquist productivity index as the geometric mean of the above two indices 2/1 1 11 1 11 11 ),( ),( ),( ),( ),,,(             tt t o tt t o tt t o tt t o tttto yxd yxd yxd yxd yxyxM ……………………… …….(vii) equation (vi) can be decomposed into the following two components namely efficiency change index (EFFCH) which measures the catching up components measuring efficiency change in relation to the frontier at different time. The second component is the geometric average of both components and measures technical change (TECHCH) which measure the technology shift between period t and t+1. The first component in TECHCH measures the position of unit t+1 with respect to the technologies in both periods. The second component also estimates this for unit t. If the TECHCH is greater (or less) than one, then technological progress (or regress) exists. ),( ),( 11 1 tt t o tt t o yxd yxd EFFCH    ………………………………………………………… … (viii) and 2/1 1 11 1 110 ),( ),( ),( ),,(            tt t o tt t o tt t o tt t yxd yxd X yxd yxd TECHCH ……………………………………….…(ix) DATA AND ITS SOURCE The study was based on the data that were drawn from the FAO web site (AGROSTAT) which covers the period 1971-2009 to estimate the TFP using Malmquist index. The following are some of the main features of the data series that were used for the study. The data consists of information on agricultural production (Crop and Livestock index) and means of production such as total rural population; land area; fertilizer; herbicide and irrigation for each of the selected countries were drawn from FAO statistic database. To investigate the link between agricultural productivity and poverty, we modeled relationship between the earlier calculated TFP and
  • 5. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 211 Human Development Index (HDI) from UNDP which is a composite index of development measuring the average achievement in three basic dimensions of human development. The components of HDI are Gross National income per capita, education and life expectancy which are used as proxy for poverty. Econometric model and variable definition The first objective to obtain the TFP was achieved by solving equation (iv)-(vi) and to examine its effect on poverty an Ordinary Least Square (OLS) estimation techniques was used to examine the effect of the above selected variables on agricultural productivity growth. Y = f(X, e)…………………………………………………………………… …(x) Where Y is the TFPCH index, that is, Malmquist Productivity Index and X is the HDI RESULTS AND DISCUSSION The Malmquist index of TFP was constructed for 42 countries for a period of 39 years. The obtained index was decomposed into technological change and efficiency change over the sample period using DEA. The Malmquist TFP indices The productivity growth and its components over the sample period are presented in table 1. The average TFP growth over the period was found to be 0.2 percent per annum with large variation in growth rate observed for various countries. Recall that the value greater than one indicates an improvement in the productivity, pure efficiency and technology while less than one implies decline. It was observed from table 2 that twenty two countries which represents about 52 percent of the total sample experienced productivity growth within the reference period. The observed growth is accounted for largely by technological change with the exception of Mali, Senegal and Liberia in which efficiency change accounts for the observed growth rather than technological progress. Other countries including Congo and Somalia experienced on the average a decline in growth. Overall, the results showed there have been evidence of technological improvement over the reference period; this indicates advances in technology as represented by an upward shift in the production frontier (2.1percent) which have not been fully exploited by African farmers and further suggests that technology is an important driver of African agricultural growth while 1.8 percent decline in efficiency was observed. The obtained technical efficiency was further decomposed into scale and pure technical efficiencies; it was observed as shown in Table 2 that there is a decline in pure efficiency change and scale efficiency change with a value of 0.987 and 0.995 respectively, this contributes to decline of overall efficiency change. This finding support the earlier findings by Nkamleu et al., 2008; Allen, 2010, Block 2010 and Ni-Pratt and Yu 2011.
  • 6. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 212 Table 1: Malmquist Index Summary of Country Means Firm Effch techch pech sech Tfpch Algeria 1.019 1.055 1.019 1.000 1.075 Angola 0.927 1.028 0.927 1.000 0.953 Benin 0.959 1.105 0.959 1.000 1.060 Botswana 0.973 1.106 0.973 1.000 1.076 Burkina Faso 1.004 1.043 1.004 1.000 1.047 Burundi 0.989 1.002 0.989 1.000 0.991 Cape Verde 1.001 1.071 1.001 1.000 1.072 Central African Republic 0.994 1.098 0.994 1.000 1.091 Chad 0.997 1.113 0.997 1.000 1.110 Comoros 0.998 1.042 0.998 1.000 1.039 Congo 0.945 1.044 0.945 1.000 0.986 Côte d'Ivoire 0.998 0.995 1.000 0.998 0.993 Djibouti 0.996 1.026 0.996 1.000 1.022 Egypt 0.989 1.025 0.989 1.000 1.014 Gabon 1.006 1.001 1.006 1.000 1.006 Ghana 0.918 1.083 0.918 1.000 0.995 Guinea 0.922 0.972 0.922 1.000 0.896 Kenya 0.938 0.974 0.938 1.000 0.914 Lesotho 0.969 1.011 0.963 1.007 0.980 Liberia 1.017 0.987 1.017 1.000 1.004 Libya 1.000 0.983 1.000 1.000 0.983 Madagascar 1.018 1.010 1.018 1.000 1.028 Malawi 0.896 0.950 0.901 0.995 0.851 Mali 1.024 0.996 1.024 1.000 1.019 Mauritius 0.967 1.020 0.965 1.002 0.986 Morocco 1.000 0.993 1.000 1.000 0.993 Mozambique 1.005 1.007 1.029 0.977 1.012 Namibia 1.030 1.005 1.022 1.007 1.035 Niger 0.952 1.048 0.984 0.967 0.997 Nigeria 0.897 0.980 0.932 0.962 0.879 Rwanda 1.000 0.999 1.000 1.000 0.999 Sao Tome and Principe 0.960 0.995 1.000 0.960 0.955 Senegal 1.031 0.980 1.001 1.030 1.011 Seychelles 1.011 0.991 1.000 1.011 1.002 Sierra Leone 1.004 0.958 1.001 1.003 0.963
  • 7. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 213 Somalia 0.920 0.991 1.000 0.920 0.911 South Africa 0.947 0.949 1.000 0.947 0.898 Swaziland 1.026 1.019 1.026 1.000 1.046 Tunisia 1.018 1.046 1.019 0.999 1.065 united republic of Tanzania 0.998 1.085 0.998 1.000 1.083 Zambia 0.889 1.108 0.889 1.000 0.984 Zimbabwe 1.097 0.984 1.097 1.000 1.079 Mean 0.982 1.021 0.987 0.995 1.002 The mean productivity growth was computed for each region namely Southern Africa, East Africa, West Africa, Central Africa and Northern Africa. The East, South and North Africa experienced growth of 3.3 percent, 2.6 percent and 3.6 percent respectively with 0.5 percent and 2 percent growth in efficiency change and technological change accounted for the observed growth in North Africa. Meanwhile, the observed growth observed in other two regions is accounted for by a decline in efficiency and improvement in the technology. It should be noted here that though productivity decline was experienced in West and southern Africa region which is largely accounted for poor efficiency change, the region still enjoy a modest technological growth of 1.8 percent and 1.6 percent respectively. This finding further support the opinion that improves performance with expenditure on R and D enhanced agricultural productivity growth. IMPLICATION OF AGRICULTURAL PRODUCTIVITY GROWTH ON POVERTY The proposition that agricultural productivity growth has a direct impact on poverty was examined using the mean TFP and HDI also technological change and HDI. We chose HDI as a proxy for poverty due to lack of complete data set for headcount index for the country selected. The result from table 2 shows a positive and significant relationship between the TFP and HDI also technological progress and HDI is significant at 5 percent probability level. For model 1, the elasticity was found to be 0.69 suggesting that 1 percent increase in the productivity growth will likely lead to 0.69 percent change in the HDI. Since TFP can be broken down into efficiency change and technological change and was earlier found that technological change contributes more to the productivity growth than the efficiency change, we further looked at the influence of technological change and HDI (model 2), the elasticity was found to be 1.29, suggesting that about 1 percent improvement in the technological change will improve the HDI by about 1.3 percent. This finding is similar to Colin et al. 2001 and further proved agricultural productivity growth to be both pro-poor and pro-growth Table 2: Dependent variable HDI Variable Model 1 Model 2 TFP index 0.69 (2.13)** +Technological change index 1.29 (2.85)** Constant 0.23 0.85 R square 0.10 0.20 F statistic 4.52 8.13 ** indicates significance at 5 %
  • 8. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 214 Conclusion and recommendations: The study confirms that the continent recorded improvement in agricultural productivity and this was due to technological progress in most of the countries. However, there were cases of decline in growth in some countries due to decline in efficiency and incidence of war and civil unrest. There was a positive and significant relationship between indicators of agricultural productivity growth and human development index (poverty indicator) implying that increase in productivity growth will result in improvement in human development index and consequently reduction in poverty. The trend is the same for improvement in technological change and improvement in human development index. This is not unexpected since technological change is the major driver of productivity growth in the continent. The study concludes that agricultural productivity growth is pro- poor and a major driver of poverty reduction in Africa. It is recommended that relevant policies to address the constraints to technology progress and efficiency should be promoted to improve productivity growth and reduce poverty. REFERENCES Alene, A.D (2010): ‘Productivity Growth and effects of R and D in African Agriculture’ Agricultural Economics 41:223-238 Block, S (2010): ‘The Decline and Rise of Agricultural Productivity in Sub-Saharan African Countries Since 1961. Working Paper 16481. Cambridge MA: National Bureau of Economic Research Caves, D. W., L. R. Christensen and W. E. Diewert. (1982), “The Economic Theory of Index Numbers and the Measurement of Input, Output, and Productivity.” Econometrica 50: 1393–1414. Charnes, A ., W.W. Cooper and E. Rhodes (1978), “Measuring the Efficiency of Decision- Making Units”. European Journal of Operation Research, 2,429-444 Cherchye, L., T. Kuosmanen and G. T. Post. (2000), ‘‘What is the Economic Meaning of FDH, A Reply to Thrall.’’ Journal of Productivity Analysis 13(3:, 259–263. Collin T; I, Xavier; V, Mckenzie-Hill and S, Wiggins (2001): Relationship Between Changes in Agricultural Productivity and Incidence of Poverty in Developing Countries. DFID Report No. 7946 Fare, R, S. Grosskopf and C.K. Lovell (1985), The measurement of efficiency of production. Boston: Kluwer-Nijhoff
  • 9. Journal of Economics and Sustainable Development www.iiste.org ISSN 2222-1700 (Paper) ISSN 2222-2855 (Online) Vol.4, No.5, 2013 215 Fare, R., S. Grosskopf,. B. Lindgren and P. Roos (1992), "Productivity Changes in Swedish Pharmacies 1980-1989: A Non-parametric Approach", Journal of Productivity Analysis, 3: 85-101. Fare, R; S. Grosskopf and C.K. Lovell (1994), Production Frontier. Cambridge University Press, Cambridge Hjalmarsson, L and A. Veiderpass (1992), Productivity in Swedish Electricity Retail Distribution. Scandinavian Journal of Economics, 94(S): 193-205 Lovell, C. A. K. (2001), ‘‘The Decomposition of Malmquist Productivity Indexes.’’ Journal of Productivity Analysis 20(3): 437–458. Malmquist, S. (1953), ‘‘Index Numbers and Indifference Surfaces.’’ Trabajos de Estadistica 4: 209–242. Nin-Pratt, A and B, Yu (2011):’ Agricultural Productivity and Policies in Sub-Sahara Africa IFPRI Discussion Paper 01150 Nkamleu, G.B., S. Kalilou and Z. Abdoulaye (2008), What Accounts for Growth in African Agriculture, American Journal of Agricultural and Biological Science, 3(1):379-388. Ray, S. C. and E. Desli (1997). ‘‘Productivity Growth, Technical Progress and Efficiency Change in Industrialized Countries: Comment.’’ American Economic Review 87(5): 1033–1039. World Bank (2000): Can Development Report 2000/01 Attacking Poverty World Bank/Oxford University Press